How can you manage missing data in an AI model?
Missing data is a common challenge in any data analysis, but especially in AI models that rely on large and complex datasets. How can you handle missing data without compromising the accuracy and reliability of your AI model? In this article, you will learn some of the causes and types of missing data, and some of the methods and tools you can use to manage them.
-
Ali NazarizadehFounder at witaik | Data Scientist | AI Product Manager
-
Jaiyesh ChaharData Scientist (ML Engineer) @ Siemens | AI Solutions, Deep Learning | IIT(ISM) Dhanbad
-
Deborah Dormah Kanubala (She/her)Research Assistant @Saarland University, #Machine Learning, #fairness, #AIEthics, Co-organizer @WiMLDS Accra-Ghana…